Probabilistic Verification of Monthly Temperature Forecasts

被引:38
|
作者
Weigel, Andreas P. [1 ]
Baggenstos, Daniel [1 ]
Liniger, Mark A. [1 ]
Vitart, Frederic [2 ]
Appenzeller, Christof [1 ]
机构
[1] MeteoSwiss, Fed Off Meteorol & Climatol, CH-8044 Zurich, Switzerland
[2] European Ctr Medium Range Weather Forecasts, Reading RG2 9AX, Berks, England
基金
瑞士国家科学基金会;
关键词
D O I
10.1175/2008MWR2551.1
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
Monthly forecasting bridges the gap between medium-range weather forecasting and seasonal predictions. While such forecasts in the prediction range of 1-4 weeks are vital to many applications in the context of weather and climate risk management, surprisingly little has been published on the actual monthly prediction skill of existing global circulation models. Since 2004, the European Centre for Medium-Range Weather Forecasts has operationally run a dynamical monthly forecasting system (MOFC). It is the aim of this study to provide a systematic and fully probabilistic evaluation of MOFC prediction skill for weekly averaged forecasts of surface temperature in dependence of lead time, region, and season. This requires the careful setup of an appropriate verification context, given that the verification period is short and ensemble sizes small. This study considers the annual cycle of operational temperature forecasts issued in 2006, as well as the corresponding 12 yr of reforecasts (hindcasts). The debiased ranked probability skill score (RPSSD) is applied for verification. This probabilistic skill metric has the advantage of being insensitive to the intrinsic unreliability due to small ensemble sizes-an issue that is relevant in the present context since MOFC hindcasts only have five ensemble members. The formulation of the RPSSD is generalized here such that the small hindcast ensembles and the large operational forecast ensembles can be jointly considered in the verification. A bootstrap method is applied to estimate confidence intervals. The results show that (i) MOFC forecasts are generally not worse than climatology and do outperform persistence, (ii) MOFC forecasts are skillful beyond a lead time of 18 days over some ocean regions and to a small degree also over tropical South America and Africa, (iii) extratropical continental predictability essentially vanishes after 18 days of integration, and (iv) even when the average predictability is low there can nevertheless be climatic conditions under which the forecasts contain useful information. With the present model, a significant skill improvement beyond 18 days of integration can only be achieved by increasing the averaging interval. Recalibration methods are expected to be without effect since the forecasts are essentially reliable.
引用
下载
收藏
页码:5162 / 5182
页数:21
相关论文
共 50 条
  • [41] EXPERIMENTAL MONTHLY LONG-RANGE FORECASTS FOR THE UNITED-KINGDOM .3. SKILL OF THE MONTHLY FORECASTS
    FOLLAND, CK
    WOODCOCK, A
    VARAH, LD
    METEOROLOGICAL MAGAZINE, 1986, 115 (1373): : 377 - 395
  • [42] VERIFICATION OF FIXED-WIDTH, CREDIBLE INTERVAL TEMPERATURE FORECASTS - COMMENT
    GORDON, ND
    BULLETIN OF THE AMERICAN METEOROLOGICAL SOCIETY, 1982, 63 (03) : 325 - 325
  • [43] Multimodel probabilistic prediction of 2 m-temperature anomalies on the monthly timescale
    Ferrone, Alfonso
    Mastrangelo, Daniele
    Malguzzi, Piero
    ADVANCES IN SCIENCE AND RESEARCH, 2017, 14 : 123 - 129
  • [44] Expected information of noisy attribute forecasts for probabilistic forecasts
    Ardakani, Omid M.
    Bordley, Robert F.
    Soofi, Ehsan S.
    European Journal of Operational Research, 2025, 323 (03) : 1013 - 1023
  • [45] PROBABILISTIC VERIFICATION
    PNUELI, A
    ZUCK, LD
    INFORMATION AND COMPUTATION, 1993, 103 (01) : 1 - 29
  • [46] Evaluation of Probabilistic Disease Forecasts
    Hughes, Gareth
    Burnett, Fiona J.
    PHYTOPATHOLOGY, 2017, 107 (10) : 1136 - 1143
  • [47] Evaluating probabilistic ecological forecasts
    Simonis, Juniper L.
    White, Ethan P.
    Ernest, S. K. Morgan
    ECOLOGY, 2021, 102 (08)
  • [48] Efficient probabilistic forecasts for counts
    McCabe, Brendan P. M.
    Martin, Gael M.
    Harris, David
    JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-STATISTICAL METHODOLOGY, 2011, 73 : 253 - 272
  • [49] PROBABILISTIC EXTREME TEMPERATURE FORECASTS USING THE BAYESIAN PROCESSOR OF ENSEMBLE OVER TAIWAN
    Chu, Hsin-Yu
    Chen, Yun-Jing
    Toth, Zoltan
    Chang, Hui-Ling
    19TH ANNUAL MEETING OF THE ASIA OCEANIA GEOSCIENCES SOCIETY, AOGS 2022, 2023, : 25 - 27
  • [50] Use and Communication of Probabilistic Forecasts
    Raftery, Adrian E.
    STATISTICAL ANALYSIS AND DATA MINING, 2016, 9 (06) : 397 - 410